Categories: AI/ML News

New approach uses generative AI to imitate human motion

An international group of researchers has created a new approach to imitating human motion by combining central pattern generators (CPGs) and deep reinforcement learning (DRL). The method not only imitates walking and running motions but also generates movements for frequencies where motion data is absent, enables smooth transition movements from walking to running, and allows for adaptation to environments with unstable surfaces.
AI Generated Robotic Content

Share
Published by
AI Generated Robotic Content

Recent Posts

Optimizing costs of generative AI applications on AWS

The report The economic potential of generative AI: The next productivity frontier, published by McKinsey…

7 hours ago

DeepSeek-V3, ultra-large open-source AI, outperforms Llama and Qwen on launch

The new model shows open-source closing in on closed-source models, suggesting reduced chances of one…

8 hours ago

Samsung HW-Q990D Review: Atmos Tested, Gamer Approved

Samsung’s celebrated flagship soundbar does just enough to beat out the rest of its Dolby…

8 hours ago

Crossing the Uncanny Valley: Breakthrough in technology for lifelike facial expressions in androids

Even highly realistic androids can cause unease when their facial expressions lack emotional consistency. Traditionally,…

8 hours ago

11 Best Beard Trimmers (2024): Full Beards, Hair, Stubble

These beard tools deliver a quality trim for all types of facial hair.

1 day ago

5 of the Most Influential Machine Learning Papers of 2024

Artificial intelligence (AI) research, particularly in the machine learning (ML) domain, continues to increase the…

2 days ago